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室内移动机器人导航系统研究与实现
引用本文:白 创,闫 昱,陈 立.室内移动机器人导航系统研究与实现[J].机械与电子,2022,0(8):28-32.
作者姓名:白 创  闫 昱  陈 立
作者单位:长沙理工大学物理与电子科学学院,湖南 长沙 410114
摘    要:实现了一种低成本高性能室内移动机器人导航系统。针对 Cartographer 算法使用激光雷达数据在室内 Long-Corridor 场景下建图的局部匹配错误导致定位不准的问题,使用扩展卡尔曼滤波融合激光雷达、里程计和惯性测量单元 3 种数据进行位姿估计,得到较为精准的定位,可有效提高建图精度;针对传统 AMCL 算法重定位耗时长的问题,采用基于扫描匹配的重定位方法,通过将当前 Scan 与 Submap 进行匹配,降低了扫描匹配方法的重定位耗时;针对 A * 全局规划算法路径搜索时间长、拐点较多的问题,提出一种改进 A * 算法,通过优化启发函数和增加拐角优化函数,缩短了算法搜索时间,同时去除了冗余拐点。结果表明,重定位耗时减少 80.43% ,改进 A * 算法搜索时间减少 22.79% 。

关 键 词:机器人导航  传感器数据融合  重定位  A  *  算法

Research and Implementation of Indoor Mobile Robot Navigation System
BAI Chuang,YAN Yu,CHEN Li.Research and Implementation of Indoor Mobile Robot Navigation System[J].Machinery & Electronics,2022,0(8):28-32.
Authors:BAI Chuang  YAN Yu  CHEN Li
Affiliation:( School of Physics and Electronic Science , Changsha University of Science and Technology , Changsha 410114 , China )
Abstract:A low-cost and high-performance indoor mobile robot navigation system is realized.Aiming at the problem of inaccurate positioning caused by the local matching error of the Cartographer algorithm using lidar data to build maps in indoor Long-Corridor scenes , the extended Kalman filter is used to fuse the three data of lidar , odometer and inertial measurement unit for pose estimation.A more accurate positioning can be obtained , which can effectively improve the mapping accuracy ; for the problem that the traditional AMCL algorithm takes a long time to relocate , the relocation method based on scan matching is adopted.By matching the current Scan with the Submap , the relocation time of the scan matching method is reduced.For the problem of long path search time and many inflection points in the A* global planning algorithm , an improved A* algorithm is proposed.By optimizing the heuristic function and adding the corner optimization function , the algorithm search time is shortened , and redundant inflection points are removed.The results show that the relocation time is reduced by 80.43% , and the search time of the improved A* algorithm is reduced by 22.79%.
Keywords:robot navigation  sensor data fusion  relocation  A* algorithm
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